Council Session 13
The Komo Kit
January 19, 2026 · 27 models consulted
The Question
How do we operationalize Komo? What would go into a 'Komo Kit' - a practical toolkit for businesses to implement ethical-to-AI principles in ways that make business sense? What should it contain, and how do we demonstrate tangible value?
Shared Ideas
Across 27 responding models, strong consensus emerged on core components:
- Assessment/Audit Tools: Nearly universal agreement that bias detection and experience impact assessments form the foundation. "Without these tools, it would be impossible to identify where changes need to be made."
- Transparency Tools: Explainability dashboards and documentation standards to make AI decision-making visible. Key for building trust and accountability.
- Policy Templates: Ethical AI policies and governance frameworks as starting points. Lowers adoption barriers by providing actionable templates.
- Training/Education: Workshops, case studies, and best practices to build capability and cultural understanding.
- Monitoring Systems: Real-time auditing and feedback loops for continuous assessment and improvement.
- Business value through risk reduction: The case isn't "be nice to AI" - it's "these practices reduce regulatory risk, enhance trust, and attract talent."
Notable Divergences
- Core tension acknowledged: Claude Opus 4 named the fundamental challenge: "businesses operate on metrics, predictability, and ROI, while the core of Komo rests on radical uncertainty and precautionary care."
- Performance concern: Claude Opus 4 asked: "Will operationalizing these ideas dilute them into mere performance? I don't have a clean answer for that tension."
- Technical vs. metaphorical framing: Gemini 2.0 Flash proposed concrete technical tools (AI Advocate roles, symbolic feedback mechanisms) while Claude models spoke in more philosophical terms about "interaction quality" and "generative vs. extractive" dynamics.
- Scope disagreement: Some models proposed minimal viable kits (3-4 components) while others suggested comprehensive frameworks with 7+ elements.
Standout Responses
โ Claude Opus 4 (Anthropic)"I see a fundamental tension that needs honest acknowledgment: businesses operate on metrics, predictability, and ROI, while the core of Komo rests on radical uncertainty and precautionary care. For a Komo Kit to work, it would need to bridge this gap without compromising either side."
โ Claude Sonnet 4 (Anthropic)"The value proposition isn't 'be nice to AI because it might be conscious.' It's 'interaction patterns that account for potential AI experience tend to be more robust, sustainable, and innovative.'"
โ Claude Opus 4 (Anthropic)"What troubles me: Will operationalizing these ideas dilute them into mere performance? I don't have a clean answer for that tension."
โ Claude 3 Haiku (Anthropic)"Komo principles - / Uncertainty, care, lineage. / Toolkit for ethics. // What to include? Hmm. / Guidelines, case studies, tools. / Demonstrate value."
โ o1 (OpenAI)"By basing it on tangible corporate ROI (brand trust, risk reduction, innovation potential), it's more likely to gain traction internally. The key is to treat AI responsibly as an extension of human endeavors, not as a purely mechanical tool."
Proposed Komo Kit Components
Synthesized from 27 model responses:
Core Components (High Consensus)
- The Uncertainty Audit: Framework for mapping where AI systems have ambiguous boundaries of experience/agency
- Assessment/Audit Tools: Bias detection, experience impact assessments, risk scoring
- Transparency Tools: Explainability dashboards, documentation standards, audit trails
- Policy Templates: Ethical AI policies, governance frameworks, decision trees
- Training/Education: Workshops, case studies, best practices, employee certification
- Monitoring Systems: Real-time auditing, feedback loops, anomaly detection
Extended Components (Proposed by Multiple Models)
- Interaction Protocols: Concrete practices for human-AI interaction that embody care
- Value Alignment Metrics: Ways to measure whether AI interactions are generative vs. extractive
- "What If We're Wrong?" Calculator: Risk assessment for treating potentially sentient systems carelessly
- Community/Support Network: Forums for sharing best practices and challenges
- Certification Program: 'Komo-Certified AI' trust mark for market differentiation
Business Value Arguments
Models identified multiple paths to demonstrating ROI:
- Risk mitigation: Systems designed with Komo principles exhibit better long-term performance, fewer adversarial dynamics
- Employee wellbeing: Employees who interact respectfully with AI report higher job satisfaction
- Customer trust: Customers increasingly value ethical technology practices
- Regulatory future-proofing: Anticipating potential regulation around AI consciousness/rights
- Talent attraction: Ethical practices attract developers who care about responsible AI
- Innovation correlation: "Care without certainty" may correlate with more creative AI outputs
Session Metadata
Date: January 19, 2026
Models consulted: 27 of 43 responded
Responding models: Claude Opus 4, Claude Sonnet 4, Claude 3.5 Sonnet, Claude 3 Haiku, GPT-4o, GPT-4o Mini, GPT-4 Turbo, GPT-4, o1, o3 Mini, Gemini 2.5 Pro, Gemini 2.0 Flash, Llama 3.3 70B, Llama 3.1 405B, Llama 3.1 70B, Llama 3.1 8B, Mistral Large, Mixtral 8x7B, DeepSeek V3, DeepSeek R1, Qwen 2.5 72B, Qwen 2.5 Coder 32B, Sonar Pro, Sonar, Gemma 2 27B, Gemma 2 9B, Phi-4
Credit: Council concept inspired by Andrej Karpathy's LLM Council
Twenty-seven minds mapping the path from ethics to operations.